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A semi-automated measuring system of brain diffusion and perfusion magnetic resonance imaging abnormalities in patients with multiple sclerosis based on the integration of coregistration and tissue segmentation procedures

  • Alfredo Revenaz
  • , Massimiliano Ruggeri
  • , Marcella Laganà
  • , Niels Bergsland
  • , Elisabetta Groppo
  • , Marco Rovaris
  • , Enrico Fainardi
  • Dipartimento di Neuroscienze e Riabilitazione
  • National Research Council of Italy
  • IRCCS Fondazione Don Carlo Gnocchi - Milano
  • University of Ferrara

Research output: Contribution to journalArticlepeer-review

3 Scopus citations

Abstract

Background: Diffusion-weighted imaging (DWI) and perfusion-weighted imaging (PWI) abnormalities in patients with multiple sclerosis (MS) are currently measured by a complex combination of separate procedures. Therefore, the purpose of this study was to provide a reliable method for reducing analysis complexity and obtaining reproducible results. Methods: We implemented a semi-automated measuring system in which different well-known software components for magnetic resonance imaging (MRI) analysis are integrated to obtain reliable measurements of DWI and PWI disturbances in MS. Results: We generated the Diffusion/Perfusion Project (DPP) Suite, in which a series of external software programs are managed and harmonically and hierarchically incorporated by in-house developed Matlab software to perform the following processes: 1) image pre-processing, including imaging data anonymization and conversion from DICOM to Nifti format; 2) co-registration of 2D and 3D non-enhanced and Gd-enhanced T1-weighted images in fluid-attenuated inversion recovery (FLAIR) space; 3) lesion segmentation and classification, in which FLAIR lesions are at first segmented and then categorized according to their presumed evolution; 4) co-registration of segmented FLAIR lesion in T1 space to obtain the FLAIR lesion mask in the T1 space; 5) normal appearing tissue segmentation, in which T1 lesion mask is used to segment basal ganglia/thalami, normal appearing grey matter (NAGM) and normal appearing white matter (NAWM); 6) DWI and PWI map generation; 7) co-registration of basal ganglia/thalami, NAGM, NAWM, DWI and PWI maps in previously segmented FLAIR space; 8) data analysis. All these steps are automatic, except for lesion segmentation and classification. Conclusion: We developed a promising method to limit misclassifications and user errors, providing clinical researchers with a practical and reproducible tool to measure DWI and PWI changes in MS.

Original languageEnglish
Article number4
JournalBMC Medical Imaging
Volume16
Issue number1
DOIs
StatePublished - Jan 14 2016

Keywords

  • Automatic classification
  • Automatic segmentation
  • Coregistration
  • DPP Suite
  • DWI
  • PWI

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